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Concatenated Global Average Pooled Deep Convolutional Embedded Clustering

机译:级联的全球平均池深度卷积嵌入式集群

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Deep Clustering learns cluster friendly salient features in embedded space. In our previous work of Global Average Pooled Deep Convolutional Embedded Clustering (GAPDCEC) algorithm, the last convolution layer feature maps are pooled to build the embedded space. This considers only spatial information retains in the last convolution layer of the encoder, which unable to capture discriminative features from entire convolutional layers. To address this issue, we propose a solution using concatenation of all convolutional layer outputs and then Global Average Pooling (GAP) is applied on the concatenated feature maps in the encoder. This will encourage the network to learn cluster friendly features of all convolutional layers. Our experimental results prove the efficiency of proposed Concatenated Global Average Pooled Deep Convolutional Embedded Clustering (CGAPDCEC).
机译:深度集群学习嵌入式空间中集群友好的显着特征。在我们之前的全球平均池深度卷积嵌入式聚类(GAPDCEC)算法中,最后的卷积层特征图被池化以构建嵌入式空间。这考虑到仅空间信息保留在编码器的最后一个卷积层中,而该空间信息无法捕获整个卷积层的判别特征。为了解决这个问题,我们提出了一种使用所有卷积层输出的级联的解决方案,然后将全局平均池(GAP)应用于编码器中的级联特征图。这将鼓励网络学习所有卷积层的集群友好特性。我们的实验结果证明了建议的级联全球平均池深度卷积嵌入式聚类(CGAPDCEC)的效率。

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